David C. Kale, Yan Liu
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引用次数: 31

摘要

主动学习、迁移学习和相关技术被一个核心主题所统一:高效和有效地使用可用数据。主动学习为构建有效的监督学习模型提供了可扩展的解决方案,同时最大限度地减少了注释工作。迁移学习利用来自一个任务的已有标记数据来帮助学习可用标记数据有限的相关任务。然而,关于如何将这两种技术结合起来的研究有限。在本文中,我们提出了一个简单而有原则的迁移主动学习框架,该框架利用相关任务中已有的标记数据来提高主动学习者的表现。我们为该算法学习到的分类器推导了一个直观的泛化误差界限,从而提供了对算法行为和一般问题的洞察。使用几个知名迁移学习数据集的实验结果证实了我们的理论分析并证明了我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating Active Learning with Transfer Learning
Active learning, transfer learning, and related techniques are unified by a core theme: efficient and effective use of available data. Active learning offers scalable solutions for building effective supervised learning models while minimizing annotation effort. Transfer learning utilizes existing labeled data from one task to help learning related tasks for which limited labeled data are available. There has been limited research, however, on how to combine these two techniques. In this paper, we present a simple and principled transfer active learning framework that leverages pre-existing labeled data from related tasks to improve the performance of an active learner. We derive an intuitive bound on generalization error for the classifiers learned by this algorithm that provides insight into the algorithm's behavior and the problem in general. Experimental results using several well-known transfer learning data sets confirm our theoretical analysis and demonstrate the effectiveness of our approach.
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